The use of genetic programming to develop a predictor of swash excursion on sandy beaches

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M. Passarella; E. B. Goldstein; S. De Muro; G. Coco;

We use genetic programming (GP), a type of machine learning (ML) approach, to predict the total and infragravity swash excursion using previously published data sets that have been used extensively in swash prediction studies. Three previously published works w... View more
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